Miranda Rodrigo Fuchs, Barriquello Carlos Henrique, Reguera Vitalio Alfonso, Denardin Gustavo Weber, Thomas Djeisson Hoffmann, Loose Felipe, Amaral Leonardo Saldanha
Technology Center, Federal University of Santa Maria (UFSM), Santa Maria 97105-900, Brazil.
Automation and Intelligent Systems, ITR-Norte, Technological University of Uruguay (UTEC), Rivera 40000, Uruguay.
Sensors (Basel). 2023 Sep 12;23(18):7815. doi: 10.3390/s23187815.
The development and growth of Wireless Sensor Networks (WSNs) is significantly propelled by advances in Radio Frequency (RF) and Visible Light Communication (VLC) technologies. This paper endeavors to present a comprehensive review of the state-of-the-art in cognitive hybrid RF-VLC systems for WSNs, emphasizing the critical task of seamlessly integrating Cognitive Radio Sensor Networks (CRSNs) and VLC technologies. The central challenge addressed is the intricate landscape of this integration, characterized by notable trade-offs between performance and complexity, which escalate with the addition of more devices and increased data rates. This scenario necessitates the development of advanced cognitive radio strategies, potentially facilitated by Machine Learning (ML) and Deep Learning (DL) approaches, albeit introducing new complexities such as the necessity for pre-training with extensive datasets. The review scrutinizes the fundamental aspects of CRSNs and VLC, spotlighting key areas like Energy Efficient Resource Allocation, Industrial Scenarios, and Energy Harvesting, and explores the synergistic amalgamation of these technologies as a promising pathway for enhanced spectrum utilization and network performance. By delving into the integration of cognitive radio technology with visible light, this study furnishes valuable insights into the potential for innovative applications in wireless communication, presenting a balanced overview of the current advancements and prospective avenues in the field of cognitive hybrid RF/VLC systems.
无线传感器网络(WSNs)的发展和增长在很大程度上受到射频(RF)和可见光通信(VLC)技术进步的推动。本文致力于全面综述用于WSNs的认知混合RF-VLC系统的最新技术,强调无缝集成认知无线电传感器网络(CRSNs)和VLC技术这一关键任务。所解决的核心挑战是这种集成的复杂情况,其特点是在性能和复杂性之间存在显著权衡,随着设备数量增加和数据速率提高,这种权衡会加剧。这种情况需要开发先进的认知无线电策略,机器学习(ML)和深度学习(DL)方法可能会对此有所帮助,尽管这会引入新的复杂性,例如需要使用大量数据集进行预训练。该综述审视了CRSNs和VLC的基本方面,突出了诸如节能资源分配、工业场景和能量收集等关键领域,并探讨了这些技术的协同融合,认为这是提高频谱利用率和网络性能的一条有前景的途径。通过深入研究认知无线电技术与可见光的集成,本研究为无线通信中的创新应用潜力提供了有价值的见解,对认知混合RF/VLC系统领域的当前进展和未来途径进行了全面概述。